Data processing: artificial intelligence – Neural network – Learning task
Patent
1993-12-08
2000-12-26
Hafiz, Tariq R.
Data processing: artificial intelligence
Neural network
Learning task
706 18, 706 26, G06F 1518, G06K 962
Patent
active
061673900
ABSTRACT:
A classification neural network for piecewise linearly separating an input space to classify input patterns is described. The multilayered neural network comprises an input node, a plurality of difference nodes in a first layer, a minimum node, a plurality of perceptron nodes in a second layer and an output node. In operation, the input node broadcasts the input pattern to all of the difference nodes. The difference nodes, along with the minimum node, identify in which vornoi cell of the piecewise linear separation the input pattern lies. The difference node defining the vornoi cell localizes input pattern to a local coordinate space and sends it to a corresponding perceptron, which produces a class designator for the input pattern.
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Brady Mark J.
Million Belayneh W.
Strand John T.
3M Innovative Properties Company
Buckingham Stephen W.
Davis George
Hafiz Tariq R.
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